연구/논문 목록
[ICML 2020] Model Compression Paper List
xeskin
2020. 6. 2. 11:16
반응형
Adversarial Neural Pruning with Latent Vulnerability Supperession (KAIST) |
Operate-Aware Soft Channel Pruning using Differentiable Masks (SNU) |
Network Pruning by Greedy Subnetwork Selection |
DropNet: Reducing Neural Network Complexity via Iterative Pruning |
Proving the Lottery Ticket Hypothesis: Pruning is All You Need |
Towards Accuarte Post-traing Network Quantization via Bit-Split and Stitching |
Online Learned Continual Compression with Adaptive Quantization Modules |
Differentiable Product Quantization for Learning Compact Embedding Layers |
Up or Down? Adaptive Rounding for Post-Training Quantization |
Feature Quantization Improves GAN Trainig |
Accelerating Large-Scale Inference with Anisotropic Vector Quantization |
Evaluating Lossy Compression Rates of Deep Generative Models |
Variable-Bitrate Neural Compression via Bayesian Arithmetic Coding |
반응형